Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Audio and video editing system design based on OpenCV

View through CrossRef
With the rapid development of the Internet, a new carrier for people to perceive the world and communicate with each other - audio and video - is gradually being favoured by the public. The development of multimedia technology and artificial intelligence technology has provided a milestone for the maturity of audio and video technology. In particular, short video platforms have slowly become a new network position for various media promotions. Especially at the moment of the epidemic, the channel of understanding the world through audio and video is increasingly valued. The public has put forward higher demands on the content and presentation of audio and video. Therefore, it is particularly important to produce quality audio-video that meets the requirements of the times, which cannot be achieved without a feasible audio-video editing system. In addition, after previous research and practice, the application of artificial intelligence technology in the field of imaging has also become mature, including some applications in the direction of entertainment. Applying AI technology to the video editing process can improve the efficiency of video editing, increase the interest of video content, and allow video creators to focus on content creation without spending too much time and energy on video editing operations, thus creating better quality videos. This design is the main technology of OpenCV and front-end technology stack, such as JavaScript, React and Electron, to implement basic video editing, video filters, in addition to the development of a friendly interactive interface. The implementation of basic video editing module and video filter module are both based on OpenCV implementation. In this design, the basic video editing implements pan, zoom and rotate operations on the video, and the video filter module is implemented by changing the RGB channel values of the image. The operations on the video can be broken down into operations on each frame of the video, and OpenCV provides a way to implement these operations. The paper concludes with a summary of the shortcomings and flaws in the design, and an outlook on the next steps and future directions.      This design is the main technology of OpenCV and front-end technology stack, such as JavaScript, React and Electron, to implement basic video editing, video filters, in addition to the development of a friendly interactive interface. The implementation of basic video editing module and video filter module are both based on OpenCV implementation. In this design, the basic video editing implements pan, zoom and rotate operations on the video, and the video filter module is implemented by changing the RGB channel values of the image. The operations on the video can be broken down into operations on each frame of the video, and OpenCV provides a way to implement these operations.     The paper concludes with a summary of the shortcomings and flaws in the design, and an outlook on the next steps and future directions.    
Title: Audio and video editing system design based on OpenCV
Description:
With the rapid development of the Internet, a new carrier for people to perceive the world and communicate with each other - audio and video - is gradually being favoured by the public.
The development of multimedia technology and artificial intelligence technology has provided a milestone for the maturity of audio and video technology.
In particular, short video platforms have slowly become a new network position for various media promotions.
Especially at the moment of the epidemic, the channel of understanding the world through audio and video is increasingly valued.
The public has put forward higher demands on the content and presentation of audio and video.
Therefore, it is particularly important to produce quality audio-video that meets the requirements of the times, which cannot be achieved without a feasible audio-video editing system.
In addition, after previous research and practice, the application of artificial intelligence technology in the field of imaging has also become mature, including some applications in the direction of entertainment.
Applying AI technology to the video editing process can improve the efficiency of video editing, increase the interest of video content, and allow video creators to focus on content creation without spending too much time and energy on video editing operations, thus creating better quality videos.
This design is the main technology of OpenCV and front-end technology stack, such as JavaScript, React and Electron, to implement basic video editing, video filters, in addition to the development of a friendly interactive interface.
The implementation of basic video editing module and video filter module are both based on OpenCV implementation.
In this design, the basic video editing implements pan, zoom and rotate operations on the video, and the video filter module is implemented by changing the RGB channel values of the image.
The operations on the video can be broken down into operations on each frame of the video, and OpenCV provides a way to implement these operations.
The paper concludes with a summary of the shortcomings and flaws in the design, and an outlook on the next steps and future directions.
     This design is the main technology of OpenCV and front-end technology stack, such as JavaScript, React and Electron, to implement basic video editing, video filters, in addition to the development of a friendly interactive interface.
The implementation of basic video editing module and video filter module are both based on OpenCV implementation.
In this design, the basic video editing implements pan, zoom and rotate operations on the video, and the video filter module is implemented by changing the RGB channel values of the image.
The operations on the video can be broken down into operations on each frame of the video, and OpenCV provides a way to implement these operations.
    The paper concludes with a summary of the shortcomings and flaws in the design, and an outlook on the next steps and future directions.
   .

Related Results

Feature selection for multimodal: acoustic event detection
Feature selection for multimodal: acoustic event detection
The detection of the Acoustic Events (AEs) naturally produced in a meeting room may help to describe the human and social activity. The automatic description of interactions betwee...
Editing: Problems of Terminology
Editing: Problems of Terminology
Taking into consideration the fact that editing is considered to be a field of scientific knowledge, a sphere of practical activity, and a discipline, problems of terminology appea...
Analisis Editing Video Broadcast Pada Acara Berita TVRI Sumatera Utara
Analisis Editing Video Broadcast Pada Acara Berita TVRI Sumatera Utara
. In the ever-growing information era, video editing has become an important part of television news production. This study investigates the use of video editing on TVRI North Suma...
Video tracking for marketing applications
Video tracking for marketing applications
Traçage du contenu marketing vidéo Au cours des dernières décennies, la production et la consommation de vidéos ont considérablement augmenté et il est communément ...
TEKNIK EDITING PADA VIDEO PROFIL SMP MUHAMMADIYAH AHMAD DAHLAN METRO
TEKNIK EDITING PADA VIDEO PROFIL SMP MUHAMMADIYAH AHMAD DAHLAN METRO
Video profil perusahaan ialah media elektronik guna menyampaikan informasi yang lebih efektif untuk memperkenalkan sebuah lembaga dan perusahaan. Lewat media inilah semua informasi...

Back to Top